Efficient facial representations for age, gender and identity recognition in organizing photo albums using multi-output ConvNet

Author:

Savchenko Andrey V.12ORCID

Affiliation:

1. National Research University Higher School of Economics, Laboratory of Algorithms and Technologies for Network Analysis, Nizhny Novgorod,

2. Samsung-PDMI Joint AI Center, St. Petersburg Department of Steklov Institute of Mathematics, St. Petersburg,

Abstract

This paper is focused on the automatic extraction of persons and their attributes (gender, year of born) from album of photos and videos. A two-stage approach is proposed in which, firstly, the convolutional neural network simultaneously predicts age/gender from all photos and additionally extracts facial representations suitable for face identification. Here the MobileNet is modified and is preliminarily trained to perform face recognition in order to additionally recognize age and gender. The age is estimated as the expected value of top predictions in the neural network. In the second stage of the proposed approach, extracted faces are grouped using hierarchical agglomerative clustering techniques. The birth year and gender of a person in each cluster are estimated using aggregation of predictions for individual photos. The proposed approach is implemented in an Android mobile application. It is experimentally demonstrated that the quality of facial clustering for the developed network is competitive with the state-of-the-art results achieved by deep neural networks, though implementation of the proposed approach is much computationally cheaper. Moreover, this approach is characterized by more accurate age/gender recognition when compared to the publicly available models.

Funder

Samsung Research and Samsung Electronics

Basic Research Program at the National Research University Higher School of Economics

Publisher

PeerJ

Subject

General Computer Science

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